I am supposed to calculate different confidence intervals and I found out that, in R, I can do that with the predict-command. But I've got a problem understanding what I have to do really. I am supposed to calculate 3 different confidence intervals: 1) for a point on the regression line 2) for a predicted (future) y-value 3) for the entire regression line. Ok.. what I've done so far:

```
fm <- lm(alcohol~beers)
```

So, to get the confidence interval for the whole regression line, I'd try:```
predict(fm,data.frame(beers = newbeers), level = 0.9, interval = "confidence")
```

But I do not really know what data.frame does.
Okay I do know that a confidence interval holds the actual value in 90% of all times (here, because 0.9). So does this now mean it holds best regression line in 90%?
I cannot quite understand the meaning for anything but a point on it and a predicted value. Also, I do only know this way to compute it, so how do I compute it in the other 2 ways? Plus, the output I get gives several upper and lower values for the interval. What does that mean?

`confint`

as in`mod <- lm(mpg ~ hp + am, data = mtcars); confint(mod)`

and type`?confint`

into the R console to learn more – Tyler Rinker Sep 20 '12 at 18:10